Not a Target. A Deep Learning Approach for a Warning and Decision Support System to Improve Safety and Security of Humanitarian Aid Workers

M. B. Lazreg, N. Noori, T. Comes, M. G. Olsen
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引用次数: 2

Abstract

Humanitarian aid workers who try to provide aid to the most vulnerable populations in the Middle East or Africa are risking their own lives and safety to help others. The current lack of a collaborative real-time information system to predict threats prevents responders and local partners from developing a shared understanding of potentially threatening situations, causing increased response times and leading to inadequate protection. To solve this problem, this paper presents a threat detection and decision support system that combines knowledge and information from a network of responders with automated and modular threat detection. The system consists of three parts. It first collects textual information, ranging from social media, and online news reports to reports and text messages from a decentralized network of humanitarian staff. Second, the system uses deep neural network techniques to automatically detects a threat or incident and provide information including location, threat category, and casualties. Third, given the type of threat and the information extracted by the NER, a feedforward network proposes a mitigation plan based on humanitarian standard operating procedures. The classified information is rapidly redistributed to potentially affected humanitarian workers at any level. The system testing results show a high precision of 0.91 and 0.98 as well as an F-measure of 0.87 and 0.88 in detecting the threats and decision support respectively. We thus combine the collaborative intelligence of a decentralized network of aid workers with the power of deep neural networks. CCS CONCEPTS • Computing methodologies → Neural networks.
不是目标。基于深度学习的预警和决策支持系统提高人道主义援助工作者的安全保障
试图向中东或非洲最脆弱的人群提供援助的人道主义援助工作者冒着生命危险帮助他人。目前缺乏一个协作的实时信息系统来预测威胁,这阻碍了响应者和当地合作伙伴对潜在威胁情况的共同理解,导致响应时间延长,并导致保护不足。为了解决这一问题,本文提出了一种威胁检测和决策支持系统,该系统将来自响应者网络的知识和信息与自动化和模块化威胁检测相结合。该系统由三部分组成。它首先收集文本信息,从社交媒体和在线新闻报道到分散的人道主义工作人员网络的报告和短信。其次,系统使用深度神经网络技术自动检测威胁或事件,并提供包括位置、威胁类别和人员伤亡等信息。第三,考虑到威胁的类型和国家核威胁系统提取的信息,前馈网络提出了基于人道主义标准作业程序的缓解计划。机密资料迅速分发给可能受影响的任何级别的人道主义工作人员。测试结果表明,该系统在检测威胁和决策支持方面的精度分别为0.91和0.98,f值分别为0.87和0.88。因此,我们将分散的援助工作者网络的协作智能与深度神经网络的力量结合起来。•计算方法→神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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